random_sample.py 6.88 KB
Newer Older
xgqdut2016's avatar
xgqdut2016 committed
1
import torch
PanZezhongQY's avatar
PanZezhongQY committed
2
import ctypes
3
from ctypes import POINTER, Structure, c_int32, c_uint64, c_void_p, c_float
xgqdut2016's avatar
xgqdut2016 committed
4
from libinfiniop import (
5
    InfiniDtype,
PanZezhongQY's avatar
PanZezhongQY committed
6
7
    infiniopHandle_t,
    infiniopTensorDescriptor_t,
xgqdut2016's avatar
xgqdut2016 committed
8
9
10
    open_lib,
    to_tensor,
    get_test_devices,
PanZezhongQY's avatar
PanZezhongQY committed
11
12
    check_error,
    create_workspace,
xgqdut2016's avatar
xgqdut2016 committed
13
14
    test_operator,
    get_args,
xgqdut2016's avatar
xgqdut2016 committed
15
    debug_all,
xgqdut2016's avatar
xgqdut2016 committed
16
17
    get_tolerance,
    profile_operation,
xgqdut2016's avatar
xgqdut2016 committed
18
    synchronize_device,
PanZezhongQY's avatar
PanZezhongQY committed
19
20
)

xgqdut2016's avatar
xgqdut2016 committed
21
22
23
24
25
26
# ==============================================================================
#  Configuration (Internal Use Only)
# ==============================================================================
# These are not meant to be imported from other modules
_TEST_CASES = [
    # voc, random_val, topp, topk, temperature
xgqdut2016's avatar
xgqdut2016 committed
27
28
29
30
31
32
33
34
35
36
    (512, 0.8, 0.8, 3, 0.5),
    (4096, 0.05, 0.9, 5, 1.0),
    (16384, 0.15, 0.85, 10, 2.0),
    (512, 0.08, 0, 3, 0.5),
    (4096, 0.5, 0.9, 1, 1.0),
    (16384, 0.15, 0, 1, 2.0),
    (16384, 0.15, 0, 1, 2.0),
    (32000, 0.08, 0.8, 50, 1.0),
    (32000, 0.08, 1.0, 25, 1.0),
    # (119696, 0.01, 1.0, 100, 1.0),
xgqdut2016's avatar
xgqdut2016 committed
37
38
39
]

# Data types used for testing
xgqdut2016's avatar
xgqdut2016 committed
40
41
42
43
44
_TENSOR_DTYPES = [torch.float16]

_TOLERANCE_MAP = {
    torch.float16: {"atol": 0, "rtol": 0},
}
xgqdut2016's avatar
xgqdut2016 committed
45
46


xgqdut2016's avatar
xgqdut2016 committed
47
DEBUG = False
xgqdut2016's avatar
xgqdut2016 committed
48
49
50
PROFILE = False
NUM_PRERUN = 10
NUM_ITERATIONS = 1000
PanZezhongQY's avatar
PanZezhongQY committed
51
52
53
54
55
56
57
58
59


class RandomSampleDescriptor(Structure):
    _fields_ = [("device", c_int32)]


infiniopRandomSampleDescriptor_t = POINTER(RandomSampleDescriptor)


60
def random_sample(data, random_val, topp, topk, voc, temperature):
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
    if topp > 0 and topk > 1:
        indices = torch.zeros([topk], dtype=torch.int64)
        dataNp = data.clone().detach()
        sorted_indices = torch.arange(voc)

        for i in range(topk):
            for j in range(i + 1, voc):
                if dataNp[i] < dataNp[j]:
                    tmp = dataNp[i].clone().detach()
                    dataNp[i] = dataNp[j].clone().detach()
                    dataNp[j] = tmp

                    tmpInd = sorted_indices[i].clone().detach()
                    sorted_indices[i] = sorted_indices[j].clone().detach()
                    sorted_indices[j] = tmpInd

        # sorted_indices = torch.argsort(dataNp, descending=True)
        indices = sorted_indices[:topk]

        dataNp = dataNp[sorted_indices]

        globalM = dataNp[0]
        dataNp = (dataNp - globalM) / temperature
        dataNp = torch.softmax(dataNp.float(), dim=0)
        sum_s = 0
        for end in range(topk):
            sum_s += dataNp[end]
            if sum_s >= topp:
                break
        if end < topk - 1:
            end += 1
        else:
            end = topk

        sum_s = 0
        for i in range(end):
            sum_s += dataNp[i]
        random_val *= sum_s

        sum_s = 0
        for i in range(end):
            sum_s += dataNp[i]
            if random_val < sum_s:
                return indices[i]
PanZezhongQY's avatar
PanZezhongQY committed
105
    else:
106
        return torch.argmax(data)
PanZezhongQY's avatar
PanZezhongQY committed
107

108
109
110
111
112
113
114
115
116
117

def test(
    lib,
    handle,
    torch_device,
    voc,
    random_val,
    topp,
    topk,
    temperature,
118
    dtype=torch.float16,
119
):
120
121
122
    print(
        f"Testing RandomSample on {torch_device} with voc:{voc} random_val:{random_val} topp:{topp} topk:{topk} temperature:{temperature} dtype:{dtype}"
    )
xgqdut2016's avatar
xgqdut2016 committed
123

PanZezhongQY's avatar
PanZezhongQY committed
124
125
    data = torch.arange(voc).float() * 0.0001
    _perm = torch.randperm(voc)
126
    data = data[_perm].to(dtype).to(torch_device)
127
128

    ans = random_sample(
129
        data, random_val, topp, topk, voc, temperature
130
    )  # 这个函数在device速度可能会很慢,可以通过data.to("cpu")方式加快计算过程
xgqdut2016's avatar
xgqdut2016 committed
131

PanZezhongQY's avatar
PanZezhongQY committed
132
    indices = torch.zeros([1], dtype=torch.int64).to(torch_device)
xgqdut2016's avatar
xgqdut2016 committed
133
134
135

    x_tensor, indices_tensor = [to_tensor(tensor, lib) for tensor in [data, indices]]

136
    indices_tensor.descriptor.contents.dt = InfiniDtype.U64  # treat int64 as uint64
PanZezhongQY's avatar
PanZezhongQY committed
137
138
139
140

    descriptor = infiniopRandomSampleDescriptor_t()
    check_error(
        lib.infiniopCreateRandomSampleDescriptor(
141
142
143
144
            handle,
            ctypes.byref(descriptor),
            indices_tensor.descriptor,
            x_tensor.descriptor,
PanZezhongQY's avatar
PanZezhongQY committed
145
146
147
148
        )
    )

    # Invalidate the shape and strides in the descriptor to prevent them from being directly used by the kernel
xgqdut2016's avatar
xgqdut2016 committed
149
150
    for tensor in [x_tensor, indices_tensor]:
        tensor.descriptor.contents.invalidate()
PanZezhongQY's avatar
PanZezhongQY committed
151
152
153
154
155
156
157

    workspace_size = c_uint64(0)
    check_error(
        lib.infiniopGetRandomSampleWorkspaceSize(
            descriptor, ctypes.byref(workspace_size)
        )
    )
158
    workspace = create_workspace(workspace_size.value, torch_device)
xgqdut2016's avatar
xgqdut2016 committed
159

xgqdut2016's avatar
xgqdut2016 committed
160
161
162
163
164
165
166
167
168
169
170
171
172
173
    def lib_random_sample():
        check_error(
            lib.infiniopRandomSample(
                descriptor,
                workspace.data_ptr() if workspace is not None else None,
                workspace_size.value,
                indices_tensor.data,
                x_tensor.data,
                random_val,
                topp,
                topk,
                temperature,
                None,
            )
PanZezhongQY's avatar
PanZezhongQY committed
174
175
        )

xgqdut2016's avatar
xgqdut2016 committed
176
177
    lib_random_sample()

xgqdut2016's avatar
xgqdut2016 committed
178
179
180
181
182
183
184
185
186
187
188
189
    if torch_device == "npu":
        synchronize_device(torch_device)

    atol, rtol = get_tolerance(_TOLERANCE_MAP, dtype)
    if DEBUG:
        debug_all(
            (indices[0].type(ans.dtype), data[indices[0]]),
            (ans, data[ans]),
            "or",
            atol=atol,
            rtol=rtol,
        )
PanZezhongQY's avatar
PanZezhongQY committed
190
    assert indices[0].type(ans.dtype) == ans or data[ans] == data[indices[0]]
xgqdut2016's avatar
xgqdut2016 committed
191

xgqdut2016's avatar
xgqdut2016 committed
192
193
194
    # Profiling workflow
    if PROFILE:
        # fmt: off
195
        profile_operation("PyTorch", lambda: random_sample(
196
                data, random_val, topp, topk, voc, temperature
xgqdut2016's avatar
xgqdut2016 committed
197
198
199
            ), torch_device, NUM_PRERUN, NUM_ITERATIONS)
        profile_operation("    lib", lambda: lib_random_sample(), torch_device, NUM_PRERUN, NUM_ITERATIONS)
        # fmt: on
PanZezhongQY's avatar
PanZezhongQY committed
200
201
    check_error(lib.infiniopDestroyRandomSampleDescriptor(descriptor))

202

PanZezhongQY's avatar
PanZezhongQY committed
203
204
205
if __name__ == "__main__":
    args = get_args()
    lib = open_lib()
xgqdut2016's avatar
xgqdut2016 committed
206

PanZezhongQY's avatar
PanZezhongQY committed
207
208
209
210
211
212
    lib.infiniopCreateRandomSampleDescriptor.restype = c_int32
    lib.infiniopCreateRandomSampleDescriptor.argtypes = [
        infiniopHandle_t,
        POINTER(infiniopRandomSampleDescriptor_t),
        infiniopTensorDescriptor_t,
    ]
xgqdut2016's avatar
xgqdut2016 committed
213

PanZezhongQY's avatar
PanZezhongQY committed
214
215
216
217
218
    lib.infiniopGetRandomSampleWorkspaceSize.restype = c_int32
    lib.infiniopGetRandomSampleWorkspaceSize.argtypes = [
        infiniopRandomSampleDescriptor_t,
        POINTER(c_uint64),
    ]
xgqdut2016's avatar
xgqdut2016 committed
219

PanZezhongQY's avatar
PanZezhongQY committed
220
221
222
223
224
225
226
227
228
229
230
231
232
    lib.infiniopRandomSample.restype = c_int32
    lib.infiniopRandomSample.argtypes = [
        infiniopRandomSampleDescriptor_t,
        c_void_p,
        c_uint64,
        c_uint64,
        c_void_p,
        c_float,
        c_float,
        c_int32,
        c_float,
        c_void_p,
    ]
xgqdut2016's avatar
xgqdut2016 committed
233

PanZezhongQY's avatar
PanZezhongQY committed
234
235
236
237
238
    lib.infiniopDestroyRandomSampleDescriptor.restype = c_int32
    lib.infiniopDestroyRandomSampleDescriptor.argtypes = [
        infiniopRandomSampleDescriptor_t,
    ]

xgqdut2016's avatar
xgqdut2016 committed
239
    DEBUG = args.debug
xgqdut2016's avatar
xgqdut2016 committed
240
241
242
243
244
245
246
247
    PROFILE = args.profile
    NUM_PRERUN = args.num_prerun
    NUM_ITERATIONS = args.num_iterations

    # Execute tests
    for device in get_test_devices(args):
        test_operator(lib, device, test, _TEST_CASES, _TENSOR_DTYPES)

PanZezhongQY's avatar
PanZezhongQY committed
248
    print("\033[92mTest passed!\033[0m")